Publication | Open Access
Generalized Value Iteration Networks:Life Beyond Lattices
33
Citations
28
References
2018
Year
Mathematical ProgrammingArtificial IntelligenceGeometric LearningLarge-scale Global OptimizationEngineeringMachine LearningComputational Model TheoryLife Beyond LatticesGraph ProcessingData SciencePlanningRobot LearningValue Iteration AlgorithmNaive GeneralizationComputer ScienceWorld ModelDeep LearningComplexity TheoryGraph Convolution OperatorsGraph Neural Network
In this paper, we introduce a generalized value iteration network (GVIN), which is an end-to-end neural network planning module. GVIN emulates the value iteration algorithm by using a novel graph convolution operator, which enables GVIN to learn and plan on irregular spatial graphs. We propose three novel differentiable kernels as graph convolution operators and show that the embedding-based kernel achieves the best performance. Furthermore, we present episodic Q-learning, an improvement upon traditional n-step Q-learning that stabilizes training for VIN and GVIN. Lastly, we evaluate GVIN on planning problems in 2D mazes, irregular graphs, and real-world street networks, showing that GVIN generalizes well for both arbitrary graphs and unseen graphs of larger scaleand outperforms a naive generalization of VIN (discretizing a spatial graph into a 2D image).
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